Me postulé a través de un reclutador. El proceso tomó 4 semanas. Acudí a una entrevista en C3 AI (Redwood City, CA) en oct 2016
Entrevista
I was reached out by a recruiter for this position. First they sent me an online test for coding and data science background knowledge. After passing the test I was invited to onsite interview.
There're 3 sessions for the onsite interview, each for about 45min~1hr. The first was to chat with 2 senior members. They asked how I think about the job responsibility and how I would explain various machine learning or data science algorithms and heuristics to clients. The second also had 2 interviewers, 1 asked algorithm question and 1 asked linear regression. I feel the algorithm question was weird because I don't think the answer really solves that question (despite I managed to figure out the answer he was looking for); maybe it's focus is on table/matrix manipulation instead of algorithm. As to the linear regression question, I really didn't expect questions about basic linear regression theory and derivation in a machine learning interview, and the interviewer was late to interview and just left after he heard my answer. The 3rd interview was also coding question.
Preguntas de entrevista [1]
Pregunta 1
- What is machine learning?
- Graph and matrix operation.
- Linear regression theory and derivation.
Me postulé en línea. Acudí a una entrevista en C3 AI (Singapur)
Entrevista
Hackerrank --> three tech interviews (proceed to the next one if you pass the current one) each round is 1 hour long --> hiring manager interview (1 hour)--> VP interview.
Preguntas de entrevista [1]
Pregunta 1
tech interviews: 1) (1 hour) traditional ML based case study, 2) (1 hour) ML concept deep dive, and 3) (1 hour) coding (leet-code medium)
Resume screening -> technical assessment -> 4 rounds of interviews:
- personal projects, simple questions not there to trick you
- situational questions: "what would you do if..."
- machine learning: starts from the very basics (stats and probabilities) to more up to date models
- coding: medium leet code
Me postulé en línea. El proceso tomó 3 semanas. Acudí a una entrevista en C3 AI (Londres, Inglaterra) en oct 2025
Entrevista
I applied directly after seeing a job advert on LinkedIn. There are MCQ and coding assessment on Hackerank, followed by a screening interview. It all went well and got invited to the technical day.
To prepare for the technical interview, I went through all materials and questions shared by others on this website and once I was half way, I noticed that the questions tend to be similar, except the pairwise coding. I recommend you go through questions here to be better prepared for the technical day.
The interview was generally okay and the team was nice. Started off with Case Study (30 mins); followed by ML questions (30 mins); and finally coding (1 hour). There is barely time in-between to switch so expect to transition very quickly. For the case study, think out loud it helped me to figure the actual problem, as they only share the problem and you figure the rest out.
The coding was fair, I had done a couple of Leetcode but they started off with Linear regression etc, kinda caught me off guard and wasted 35 mins on it. Though the program ran, the interviewer said there isn't enough time to complete second question, and we shared our coding experiences and clarity on a few questions. I am pretty confident in stats and ML knowledge but the issue could have been coding; so make sure you are up to speed with anything that can be thrown at you.
Two days later I received a rejection email. No reason after having spend so much time is a bit disrespectful but we move on.
Preguntas de entrevista [1]
Pregunta 1
Case study: Waste reduction in chain stores. They simply stated that and I described it as a demand forecasting problem that can be solved with Linear Regression. Besides clarification questions, It was fine and they took it.
MLQ
1. Difference between Supervised and Unsupervised Learning, and give examples
2. Difference between bagging and boosting;
3. Bias and variance, and explain in the context of Bagging/boosting
4. Performance metrics; what does AUC mean, interpret AUC of 50%
5. Gradient descent
6. Overfitting and Underfitting and how to overcome them in Decision Trees
Coding: Implement linear regression, numpy, and plotting importance scores